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Intensive care photoplethysmogram datasets and machine-learning for blood pressure estimation: Generalization not guarantied

Weber-Boisvert, Guillaume ; Gosselin, Benoit and Sandberg, Frida LU (2023) In Frontiers in Physiology 14.
Abstract

The large MIMIC waveform dataset, sourced from intensive care units, has been used extensively for the development of Photoplethysmography (PPG) based blood pressure (BP) estimation algorithms. Yet, because the data comes from patients in severe conditions-often under the effect of drugs-it is regularly noted that the relationship between BP and PPG signal characteristics may be anomalous, a claim that we investigate here. A sample of 12,000 records from the MIMIC waveform dataset was stacked up against the 219 records of the PPG-BP dataset, an alternative public dataset obtained under controlled experimental conditions. The distribution of systolic and diastolic BP data and 31 PPG pulse morphological features was first compared between... (More)

The large MIMIC waveform dataset, sourced from intensive care units, has been used extensively for the development of Photoplethysmography (PPG) based blood pressure (BP) estimation algorithms. Yet, because the data comes from patients in severe conditions-often under the effect of drugs-it is regularly noted that the relationship between BP and PPG signal characteristics may be anomalous, a claim that we investigate here. A sample of 12,000 records from the MIMIC waveform dataset was stacked up against the 219 records of the PPG-BP dataset, an alternative public dataset obtained under controlled experimental conditions. The distribution of systolic and diastolic BP data and 31 PPG pulse morphological features was first compared between datasets. Then, the correlation between features and BP, as well as between the features themselves, was analysed. Finally, regression models were trained for each dataset and validated against the other. Statistical analysis showed significant




p
<
0.001



differences between the datasets in diastolic BP and in 20 out of 31 features when adjusting for heart rate differences. The eight features showing the highest rank correlation







ρ




>

0.40



to systolic BP in PPG-BP all displayed muted correlation levels







ρ




<

0.10



in MIMIC. Regression tests showed twice higher baseline predictive power with PPG-BP than with MIMIC. Cross-dataset regression displayed a practically complete loss of predictive power for all models. The differences between the MIMIC and PPG-BP dataset exposed in this study suggest that BP estimation models based on the MIMIC dataset have reduced predictive power on the general population.

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Please use this url to cite or link to this publication:
author
; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
blood pressure estimation, intensive care datasets, PPG datasets, PPG-BP, UCI, MiMiC, photoplethysmography, BP estimation
in
Frontiers in Physiology
volume
14
article number
1126957
pages
15 pages
publisher
Frontiers Media S. A.
external identifiers
  • scopus:85150175632
  • pmid:36935753
ISSN
1664-042X
DOI
10.3389/fphys.2023.1126957
project
Diagnostic Biomarkers in Atrial Fibrillation - Autonomic Nervous System Response as a Sign of Disease Progression
language
English
LU publication?
yes
additional info
Copyright © 2023 Weber-Boisvert, Gosselin and Sandberg.
id
7baf8a18-75b2-4434-8adc-a9d5a25ccb5f
date added to LUP
2023-03-29 12:49:05
date last changed
2024-06-14 00:47:00
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  abstract     = {{<p>The large MIMIC waveform dataset, sourced from intensive care units, has been used extensively for the development of Photoplethysmography (PPG) based blood pressure (BP) estimation algorithms. Yet, because the data comes from patients in severe conditions-often under the effect of drugs-it is regularly noted that the relationship between BP and PPG signal characteristics may be anomalous, a claim that we investigate here. A sample of 12,000 records from the MIMIC waveform dataset was stacked up against the 219 records of the PPG-BP dataset, an alternative public dataset obtained under controlled experimental conditions. The distribution of systolic and diastolic BP data and 31 PPG pulse morphological features was first compared between datasets. Then, the correlation between features and BP, as well as between the features themselves, was analysed. Finally, regression models were trained for each dataset and validated against the other. Statistical analysis showed significant <br>
 <br>
 <br>
 <br>
 <br>
 p <br>
 &lt; <br>
 0.001<br>
 <br>
 <br>
 <br>
 differences between the datasets in diastolic BP and in 20 out of 31 features when adjusting for heart rate differences. The eight features showing the highest rank correlation <br>
 <br>
 <br>
 <br>
 <br>
 <br>
 <br>
 <br>
 ρ<br>
 <br>
 <br>
 <br>
 <br>
 &gt; <br>
 <br>
 0.40<br>
 <br>
 <br>
 <br>
 to systolic BP in PPG-BP all displayed muted correlation levels <br>
 <br>
 <br>
 <br>
 <br>
 <br>
 <br>
 <br>
 ρ<br>
 <br>
 <br>
 <br>
 <br>
 &lt; <br>
 <br>
 0.10<br>
 <br>
 <br>
 <br>
 in MIMIC. Regression tests showed twice higher baseline predictive power with PPG-BP than with MIMIC. Cross-dataset regression displayed a practically complete loss of predictive power for all models. The differences between the MIMIC and PPG-BP dataset exposed in this study suggest that BP estimation models based on the MIMIC dataset have reduced predictive power on the general population.<br>
 </p>}},
  author       = {{Weber-Boisvert, Guillaume and Gosselin, Benoit and Sandberg, Frida}},
  issn         = {{1664-042X}},
  keywords     = {{blood pressure estimation; intensive care datasets; PPG datasets; PPG-BP; UCI; MiMiC; photoplethysmography; BP estimation}},
  language     = {{eng}},
  month        = {{03}},
  publisher    = {{Frontiers Media S. A.}},
  series       = {{Frontiers in Physiology}},
  title        = {{Intensive care photoplethysmogram datasets and machine-learning for blood pressure estimation: Generalization not guarantied}},
  url          = {{http://dx.doi.org/10.3389/fphys.2023.1126957}},
  doi          = {{10.3389/fphys.2023.1126957}},
  volume       = {{14}},
  year         = {{2023}},
}